In recent years, much research has been devoted to solve the problem of missing data imputation. Although most of the novel proposals look attractive for some reason, less attention has been paid to the problem of when and why a particular method should be chosen while discarding the others. This matter is far crucial in applications, given that unsuitable solutions could heavily affect the reliability of statistical analyses. Starting from this, this work is addressed to study how well several algorithmic-type imputation methods perform in the case of quantitative data. We focus on three different logics of imputing, based respectively on the use of random forests, iterative PCA, and the forward procedure. In particular, the latter, having...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
For multivariate datasets with missing values, we present a procedure of statistical inference and s...
International audienceThe presented methodology for single imputation of missing values borrows the ...
The increasing availability of data often characterized by missing values has paved the way for the ...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
Missing data continues to be an issue not only the field of statistics but in any field, that deals ...
The problem of incomplete data and its implications for drawing valid conclusions from statistical a...
The Nearest Neighbour Imputation (NNI) method has a long history in missing data imputation. Likewis...
Missing data recurrently affect datasets in almost every field of quantitative research. The subject...
The performance evaluation of imputation algorithms often involves the generation of missing values...
Missing data is one of the challenges we are facing today in modeling valid statistical models. It r...
Philosophiae Doctor - PhD (Statistics and Population Studies)The aim of this study is to look at the...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
Missing data is a common problem which has consistently plagued statisticians and applied analytical...
Given the prevalence of missing data in modern statistical research, a broad range of methods is ava...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
For multivariate datasets with missing values, we present a procedure of statistical inference and s...
International audienceThe presented methodology for single imputation of missing values borrows the ...
The increasing availability of data often characterized by missing values has paved the way for the ...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
Missing data continues to be an issue not only the field of statistics but in any field, that deals ...
The problem of incomplete data and its implications for drawing valid conclusions from statistical a...
The Nearest Neighbour Imputation (NNI) method has a long history in missing data imputation. Likewis...
Missing data recurrently affect datasets in almost every field of quantitative research. The subject...
The performance evaluation of imputation algorithms often involves the generation of missing values...
Missing data is one of the challenges we are facing today in modeling valid statistical models. It r...
Philosophiae Doctor - PhD (Statistics and Population Studies)The aim of this study is to look at the...
An extensive investigation via simulation is carried out with the aim of comparing three nonparametr...
Missing data is a common problem which has consistently plagued statisticians and applied analytical...
Given the prevalence of missing data in modern statistical research, a broad range of methods is ava...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
For multivariate datasets with missing values, we present a procedure of statistical inference and s...
International audienceThe presented methodology for single imputation of missing values borrows the ...